Title: DYNAMIQUE SPATIALE DE L'INNOVATION A TRAVERS L
1Conference on Medium Term Economic Assessment
(CMTEA) 39TH Edition, Iasi, September 2527,
2008 PROGNOSIS USING THE MULTIVARIATE
STATISTICAL ANALYSIS OF THE DYNAMICS OF A
PHENOMENON Professor Elisabeta JABA,
PhD Assistant Christiana Brigitte BALAN,
PhD Lecturer Mariana GAGEA, PhD Alexandru Ioan
Cuza University of Iasi
2Introduction
The analysis of a phenomenon dynamics consists of measuring the time variation, decomposing by components the time series and extrapolating the time series, especially the trend and the seasonal variation. Granger, 1980 Coutrot, Droesbeke, 1990 Gourieroux, Monfort, 1990 Droesbeke s.a., 1990 Gujarati, D , 1995 Makridakis, Wheelwright, Hyndman, 1997 Pecican, E. S., 2006
The approach of the time series as stochastic processes using ARIMA models is presented in various papers published in the last two decades. Lütkepohl, 1993 Hamilton, 1994 Box, G. E. P., Jenkins, G. M. and Reinsel, G. C, 1994, Mélard, 1990 Brockwell, P.J. and Davis, R. A. 2002 Green, W., 2005 Bourbonnais, R., 2005
Classical analysis
Modern analysis
- In most studies of time series analysis, one
starts from the hypothesis of linearity. - This hypothesis is opposing to the evolution of
the specific transition and post-transition
phenomena. - For such situations, we propose a forecast model
that takes into consideration the economic,
social and political environment in which the
analyzed phenomenon develops.
3The Romanian economic environment in the
transition period
The economic changes specific to the transition
period are characterised by1. The restructuring
and privatization process that generated economic
downfalls, unemployment and inflation2. The
improvement of the macroeconomic output, after
2003, reflected by the positive GDP growth rate
generated by the high volume of investments and
private consumption
The socio-demo-economic indicators follow
specific evolutions
- the indexes of the employment rate dynamics show
a general decreasing trend - the population number, after 1990, decreased
constantly with negative yearly average rhythms
and the change of the population dynamics by
residence areas - the natural increase was positive since 1992 and
has become negative after that - the GDP has a positive trend
4Overview of the presentation
1. Data and variables
2. Methodology 2.1. Working hypothesis 2.2.
The algorithm of the proposed method
3. Results 3.1. Years-cluster with respect to
the dynamics of the observed phenomena using the
Principal Component Analysis (PCA) 3.2.
Fishers classification functions coefficients
3.3. The classification of the horizon 2008 in
a years-cluster 3.4. The employment rate
estimated for the year 2008
4. Conclusion
51. Data and variables
- For expressing the employment we used the
employment rate. The dynamics of the employment
rate and of the influence factors (demographic
and economic) is evaluated through indexes. - The observed period is 1990-2004, and the
forecast horizon refers to the years 2007-2009. - The data are obtained from the official
statistics Romanian Statistical Yearbook,
1991-2005 and they were processed with the SPSS
software. - The variables considered in our study are the
independent variables X1, X2, , X7, and the
variable X8 (Employment rate), presented in Table
1.
Table 1. The variables considered in the study
Variables Variable Name in SPSS
X1 Death rate death_rate
X2 Birth rate birth_rate
X3 Life expectancy life_expect
X4 Unemployment rate unempl_rate
X5 GDP/inhabitant GDP_inhab
X6 Number of emigrants emigr
X7 Net migration net_migr
X8 Employment rate empl_rate
62.1. Working hypothesis
- The employment rate dynamics has a specific
trend defined by years-clusters with respect to
the values of the dynamics indexes and the trend
related to the changes made in the economic,
social and political environment. - The use of a method that takes account of the
specific variations, with different trend and
changing trend, of the phenomena that determine
the employment rate. - A trend extrapolation of the employment rate, as
in the classical prognosis, for the entire
period, would bring serious deviations from the
normal path of evolution of the phenomena.
72.2.The algorithm of the proposed method
- We propose a method of forecast of a phenomenon
level based on the forecast of the its
development environment. - This method takes in consideration
- the relationships between the dynamics of the
influence factors and the employment rate
dynamics ? years-clusters - the dynamics of the influence factors define the
trend for the years-clusters. - The application of this method supposes an
algorithm with several stages, using statistical
methods of multivariate analysis.
8- Stage 1. We evaluate and synthesize the
interrelations among the phenomena that
characterize the development environment of the
employment rate dynamics. - We identify years-clusters based on the
interrelations between the employment rate
dynamics and the influence factors dynamics,
using the Principal Component Analysis (PCA). - Stage 2. We identify the years-cluster in which a
specified forecast horizon is classified. - We use the Fishers classification functions
defined by the Discriminant Analysis (DA). - The forecast horizon is classified in the
years-cluster for which the Fishers
classification function from DA gives the highest
score. - The scores are computed based on the estimations
of the influence factors for the forecast
horizon. The estimations are obtained for the
trend models we chose. - Stage 3. We estimate the parameters of the
employment rate forecast model - The forecast model is defined by the trend
corresponding to the years-cluster to which the
forecast horizon belongs.
93. Results
3.1. Years-cluster with respect to the dynamics
of the observed phenomena
The years-clusters show characteristics specific
to the dynamics of the analyzed phenomena.
10- the 1st cluster consisting of the years 1990-1992
(tend_pos) is characterized by - a positive dynamics of the phenomena such as
the employment rate, the natural growth, the net
migration and the number of external emigrants. - a negative dynamics of the GDP/inhabitant, life
expectancy, death rate and unemployment rate - the 2nd cluster made up of the years 1993-2001
(tend_ct) is characterized by - a stationary dynamics of the analysed phenomena
- the 3rd cluster comprising the years 2002-2004
(tend_neg) is characterized by - a positive dynamics of the GDP/inhabitant, life
expectancy, death rate and unemployment rate - a negative dynamics of the employment rate,
natural growth, the net migration and the number
of external emigrants - the years 1993 and 1994 have singular values.
113.2. Fishers classification functions
coefficients
- The Fishers classification functions of a
forecast horizon in a years-cluster characterized
by a specific dynamics of the employment rate are
defined as follows - 1st cluster (tend _pos)
123.3. The classification of the horizon 2008 in a
years-cluster
- The trend model for each influence factor and the
estimations of the trend model parameters
The influence factors and the trend models The estimated values of the trend model parameters The estimated values of the trend model parameters The estimated values of the trend model parameters The estimated values of the trend model parameters
The influence factors and the trend models a b c d
X1 Death rate a 0.992 (t28.825) (Sig.0) b 0.031 (t3.082) (Sig.0.009) c -0.001 (t-2.487) (Sig.0.029)
X2 Birth rate a 4.608 (t6.308) (Sig.0) b -2.096 (t-5.478) (Sig.0) c 0.223 (t4.076) (Sig.0.002) d -0.008 (t-3.398) (Sig.0.006)
X3 Life expectancy a 0.991 (t212.523) (Sig.0) b 0.002 (t3.758) (Sig.0.002)
X4 Unemployment rate a 0.000 b 1.359 (t3.475) (Sig.0.005) c 0.18 (t-3.23) (Sig.0.008) d 0.007 (t3.022) (Sig.0.012)
X5 GDP/inhabitant a 0.961 (t6.311) (Sig.0) b -0.099 (t-2.262) (Sig.0.043) c 0.01 (t3.861) (Sig.0.002)
X6 Number of emigrants a109846.5 (t8.188) (Sig.0) b-32794.2 (t-4.667) (Sig.0.001) c3564.881 (t3.552) (Sig.0.005) d-122.996 (t-2.976) (Sig.0.013)
X7 Net migration a 0.751 (t5.34) (Sig.0) b -0.132 (t-3.271) (Sig.0.007) c 0.006 (t2.417) (Sig.0.032)
13- Estimations of the influence factors for a
forecast horizon
The influence factors and the trend models Year Year Year
The influence factors and the trend models 2007 2008 2009
1.23 1.23 1.22
-4.608 -5.881 -7.524
1.023 1.025 1.027
4.313 5.474 6.966
1.937 2.168 2.419
-6042.78 -21683.6 -42740.3
0.175 0.241 0.319
14- Classification of the horizon 2008 in a
years-cluster defined by the trend of the
influence factors
- The classification functions for the 2008
forecast horizon are - for the 1st cluster (tend_pos)
- for the 2nd cluster (tend_ct)
- for the 3rd cluster (tend_neg)
15- The values for the classification functions for
the years 2007, 2008 and 2009 are
Classification functions Year Year Year
Classification functions 2007 2008 2009
Positive trend 130302.87 110890.49 96060.87
Constant trend 130234.84 115778.54 96144.56
Negative trend 129720.93 115044.76 95109.22
- For 2009, we notice that the largest score is
obtained for the years-cluster tend_ct.
Consequently, the forecast horizon, the year
2009, may be classified in the years-cluster with
constant trend. - As a result, the employment rate in 2009 will
develop under the influence of the constant
dynamics of the influence factors.
163.4. The employment rate estimated for the year
2009
- We estimate the employment rate for 2009 based on
the trend equation of the employment rate values
in the cluster 1995-2001, (tend_ct),
characterized by a stationary, constant dynamics
of the analyzed phenomena. - The estimated equation for the employment rate
is
- (Sig.0,002)
(Sig.0,000) - If we consider the dynamics conditions registered
by the years-cluster tend_ct, which has a linear
trend, we look forward to an employment rate
equal to 55.24 for the year 2009. - The 95 confidence interval for the employment
rate are 52,85 and 57,33.
174. Conclusions
- Traditionally, the statistical forecast is done
by trend extrapolation. Such a forecast takes
into account the trend for the overall time
period. This implies the hypothesis of a similar
evolution during the entire period, ignoring the
specific trend of each factor that defines the
development environment of the studied
phenomenon. - The analysis we made for the period 1990-2004
underlines a different dynamics of the phenomena,
changing both its sign and its value during the
analysed period. This is a dynamics specific to
the transition periods. - Using the PCA we identified years-clusters
defined by different dynamics of the influence
factors that have impact on the employment rate.